Publication | Open Access
Classifying EEG for Brain-Computer Interface: Learning Optimal Filters for Dynamical System Features
38
Citations
13
References
2007
Year
EngineeringMotor ControlDynamical System FeaturesSocial SciencesData SciencePattern RecognitionCognitive ElectrophysiologyMultichannel Eeg RecordingsCognitive ScienceNeuroinformaticsLearning Optimal FiltersTemporal Pattern RecognitionNeuroimagingSignal ProcessingMotor ImaginationBrain-computer InterfaceComputational NeuroscienceEeg Signal ProcessingNeuroscienceBraincomputer InterfaceBrain Modeling
Classification of multichannel EEG recordings during motor imagination has been exploited successfully for brain-computer interfaces (BCI). In this paper, we consider EEG signals as the outputs of a networked dynamical system (the cortex), and exploit synchronization features from the dynamical system for classification. Herein, we also propose a new framework for learning optimal filters automatically from the data, by employing a Fisher ratio criterion. Experimental evaluations comparing the proposed dynamical system features with the CSP and the AR features reveal their competitive performance during classification. Results also show the benefits of employing the spatial and the temporal filters optimized using the proposed learning approach.
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